On Outsourcing Artificial Neural Network Learning of Privacy-Sensitive Medical Data to the Cloud.

Dimitrios Melissourgos, Hanzhi Gao, Chaoyi Ma, Shigang Chen, Samuel S Wu
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引用次数: 2

Abstract

Machine learning and artificial neural networks (ANNs) have been at the forefront of medical research in the last few years. It is well known that ANNs benefit from big data and the collection of the data is often decentralized, meaning that it is stored in different computer systems. There is a practical need to bring the distributed data together with the purpose of training a more accurate ANN. However, the privacy concern prevents medical institutes from sharing patient data freely. Federated learning and multi-party computation have been proposed to address this concern. However, they require the medical data collectors to participate in the deep-learning computations of the data users, which is inconvenient or even infeasible in practice. In this paper, we propose to use matrix masking for privacy protection of patient data. It allows the data collectors to outsource privacy-sensitive medical data to the cloud in a masked form, and allows the data users to outsource deep learning to the cloud as well, where the ANN models can be trained directly from the masked data. Our experimental results on deep-learning models for diagnosis of Alzheimer's disease and Parkinson's disease show that the diagnosis accuracy of the models trained from the masked data is similar to that of the models from the original patient data.

Abstract Image

将隐私敏感医疗数据的人工神经网络学习外包到云端。
在过去的几年里,机器学习和人工神经网络一直处于医学研究的前沿。众所周知,人工神经网络受益于大数据,数据的收集通常是分散的,这意味着它存储在不同的计算机系统中。实际需要将分布式数据结合在一起,以训练更准确的人工神经网络。然而,隐私问题阻碍了医疗机构自由共享患者数据。已经提出了联合学习和多方计算来解决这一问题。然而,它们要求医疗数据收集器参与数据用户的深度学习计算,这在实践中是不方便甚至不可行的。在本文中,我们建议使用矩阵掩码来保护患者数据的隐私。它允许数据收集器以屏蔽的形式将对隐私敏感的医疗数据外包到云,并允许数据用户将深度学习外包到云上,在云上可以直接从屏蔽的数据中训练ANN模型。我们对用于诊断阿尔茨海默病和帕金森病的深度学习模型的实验结果表明,从掩蔽数据训练的模型的诊断准确性与从原始患者数据训练的模式的诊断准确性相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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